Tightening optimality gap with confidence through conformal prediction
arXiv stat.ML / 3/24/2026
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Key Points
- The paper proposes a conformal prediction framework to tighten overly loose primal and dual bounds from constrained optimization solvers, improving practical usefulness for decision-making.
- It incorporates selective inference to handle heteroskedasticity observed in bound quality, aiming to produce more reliable prediction intervals across varying conditions.
- The method leverages the solvers’ existing certified validity of dual/primal bounds to maintain coverage guarantees while yielding narrower, more informative intervals.
- Experiments on large-scale industrial optimization problems indicate the approach can achieve the same coverage more efficiently than baseline techniques.
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